基于灰色关联分析的改进模糊支持向量机信用评分

Baiheng Yi, Jianjun Zhu
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引用次数: 5

摘要

随着经济的复苏,信用评分变得越来越重要,商业银行和金融公司收集了大量的客户信用数据。随着机器学习的兴起,信用风险可以更容易地根据历史数据进行评估,支持向量机(SVM)被认为是一种“现成的”监督学习算法,可以成功解决分类问题。本文提出了一种改进的模糊支持向量机(FSVM)来克服噪声和离群值带来的分类问题。首先,定义平均灰色关联度的概念来描述训练样本之间的相关性。然后,选择同质和异质类中心作为两个参考点,从有效数据中区分噪声和异常值。最后,给出模糊隶属度函数用于FSVM的训练。作为实证研究,本文选取了两个信用数据集来验证模型的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Credit scoring with an improved fuzzy support vector machine based on grey incidence analysis
Credit scoring has become increasingly important as the economy recovers, and thus a huge amount of customer credit data is collected by commercial banks and finance corporations. With the rise of machine learning, credit risk can be assessed more easily according to historic data, and support vector machine (SVM) is considered to be an “off-the-shelf” supervised learning algorithm to solve the classification problem successfully. In this paper, an improved fuzzy support vector machine (FSVM) is proposed to overcome the classification problem caused by noise and outliers. First, the notion of mean grey incidence degree is defined to describe the relevance among the training samples. Then, homogeneous and heterogeneous class centers are selected as two reference points in order to discriminate noise and outliers from the valid data. Finally, a fuzzy membership function is given for the purpose of FSVM training. As an empirical study, two credit data set are chosen to demonstrate the feasibility of the model.
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